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Multispectral-lidar data fusion via multiple kernel learning for remote sensing classification

机译:多个内核学习对遥感分类的多个内核 - 激光雷达数据融合

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The airborne multispectral LiDAR system can simultaneously acquire the spatial, spectral and elevation features of the surface, making it an advanced method to acquire geometry spectral and elevation data at the same space and time. In order to represent and fuse the multispectral LiDAR data effectively, we research on two kernel feature structures, both of which utilize the provided features and fuse them by different Multiple Kernel Learning (MKL) methods to form the basic kernels. Instead of directly stacking multidimensional features as a single feature to generate multiple kernel matrices by altering the kernel parameter (FS-MKL), Feature-Based MKL (FBMKL) is used to form the combined kernel. With a fixed kernel parameter, FB-MKL firstly generates basic kernels according to each feature space by Single-Kernel (SK) method, and then applies the state-of-the-art kernel learning methods to align the generated kernels to project the features for linear SVM classifier. To prove the validity of the model, we exploit Single Kernel (SK) and several MKL methods to conduct the classification experiments with a real airborne Multispectral LiDAR data set. The result shows that the aforementioned FB-MKL model suits multispectral LiDAR data features and achieve higher classification precision compared with the existing FS-MKL model.
机译:空气传播的多光谱激光雷达系统可以同时获取表面的空间,光谱和高度特征,使其成为在同一空间和时间处获取几何光谱和高程数据的先进方法。为了有效地代表和融合多光谱激光雷达数据,我们研究了两个内核特征结构,其中两个内核特征结构都利用提供的功能并通过不同的多个内核学习(MKL)方法来熔断它们来形成基本内核。通过改变内核参数(FS-MKL)来而不是直接堆叠作为单个要素以生成多个内核矩阵的多维特征,而不是将基于特征的MKL(FBMKL)形成组合内核。使用固定内核参数,FB-MKL首先通过单内核(SK)方法根据每个功能空间生成基本内核,然后应用最先进的内核学习方法,以将所生成的内核对齐以对其进行投影功能线性SVM分类器。为了证明模型的有效性,我们利用单个内核(SK)和几种MKL方法,以便使用真正的空中多光谱LIDAR数据集进行分类实验。结果表明,与现有的FS-MKL模型相比,上述FB-MKL模型适用于多光谱LIDAR数据特征,并实现更高的分类精度。

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